Adaptive edge service deployment in burst load scenarios using deep reinforcement learning


연구 분야: Software Development



학회: The Journal of Supercomputing


초록

The development of edge computing provides a novel deployment strategy for delay-aware applications, in which applications initially deployed in central servers are shifted closer to end-users for higher-quality and lower-delay services. However, with the growth in the number of end-users and devices, edge services are increasingly susceptible to sudden load spikes. In burst load scenarios, deploying services and allocating resources to maintain service quality and load balancing of edge servers become challenging, particularly given the coupling of resource requirements between services. This paper addresses this challenge by modeling the load burst scenario as a Markov decision problem and proposing a deep reinforcement learning-based (DRL-based) approach. The proposed approach ranks services based on their migration status and request delay violations, and makes scaling and migration decisions for each service in turn, with the goal of maximizing the total request throughput while satisfying delay requirements and resource constraints. Simulation results show that the proposed approach outperforms other algorithms in terms of total throughput and delay violation rate.


Author Profile
Jin Xu

School of Information Science and Engineering East China University of Science and Technology Shanghai 200237 China

Andorra
Author Profile
Huiqun Yu

School of Information Science and Engineering East China University of Science and Technology Shanghai 200237 China

Andorra
Author Profile
Guisheng Fan

Shanghai Key Laboratory of Computer Software Evaluating and Testing Shanghai 201112 China

Andorra

📄 논문 정보

발행 연도 2023년
인용수 2
출판 국가 Andorra
사이트 Springer
좋아요 수 0

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